| Literature DB >> 35117471 |
Yating Zhang1, Xiaoqian Wu2, Li He3, Chan Meng4, Shunda Du2, Jie Bao1, Yongchang Zheng2.
Abstract
Hyperspectral imaging (HSI) is an emerging new technology in solid tumor diagnosis and detection. It incorporates traditional imaging and spectroscopy together to obtain both spatial and spectral information from tissues simultaneously in a non-invasive manner. This imaging modality is based on the principle that different tissues inherit different spectral reflectance responses that present as unique spectral fingerprints. HSI captures those composition-specific fingerprints to identify cancerous and normal tissues. It becomes a promising tool for performing tumor diagnosis and detection from the label-free histopathological examination to real-time intraoperative assistance. This review introduces the basic principles of HSI and summarizes its methodology and recent advances in solid tumor detection. In particular, the advantages of HSI applied to solid tumors are highlighted to show its potential for clinical use. 2020 Translational Cancer Research. All rights reserved.Entities:
Keywords: Hyperspectral imaging (HSI); intraoperative assistance; solid tumor; tumor detection; tumor diagnosis
Year: 2020 PMID: 35117471 PMCID: PMC8798535 DOI: 10.21037/tcr.2019.12.53
Source DB: PubMed Journal: Transl Cancer Res ISSN: 2218-676X Impact factor: 1.241
Figure 1Illustration of penetration depth and spatial resolution characteristics of HSI and current medical imaging methods. An extra axis, representing spectral range, is added to better present the distinction between HSI and other methods. HSI, hyperspectral imaging.
Figure 2Hyperspectral data cube is a three-dimensional cube with two spatial dimensions and one spectral dimension. Left is the spectrum of a single pixel. Right is the image at a single wavelength.
Figure 3General steps of HSI body surface inspection. (I) Obtain the hyperspectral image data; (II) pre-process the image to remove interference factors, such as light correction, surface texture; (III) perform image segmentation, extract the regions of interest, and then select feature bands according to the results of histopathological analysis; (IV) choose algorithms to extract and analyze features from the interested regions. SVM, support vector machine; HSI, hyperspectral imaging.